Walter Wencke, Pohlkamp Christian, Meggendorfer Manja, Nadarajah Niroshan, Kern Wolfgang, Haferlach Claudia, Haferlach Torsten
MLL Munich Leukemia Laboratory, Max-Lebsche-Platz 31, 81377 München, Germany.
Blood Rev. 2023 Mar;58:101019. doi: 10.1016/j.blre.2022.101019. Epub 2022 Oct 7.
The future of clinical diagnosis and treatment of hematologic diseases will inevitably involve the integration of artificial intelligence (AI)-based systems into routine practice to support the hematologists' decision making. Several studies have shown that AI-based models can already be used to automatically differentiate cells, reliably detect malignant cell populations, support chromosome banding analysis, and interpret clinical variants, contributing to early disease detection and prognosis. However, even the best tool can become useless if it is misapplied or the results are misinterpreted. Therefore, in order to comprehensively judge and correctly apply newly developed AI-based systems, the hematologist must have a basic understanding of the general concepts of machine learning. In this review, we provide the hematologist with a comprehensive overview of various machine learning techniques, their current implementations and approaches in different diagnostic subfields (e.g., cytogenetics, molecular genetics), and the limitations and unresolved challenges of the systems.
血液疾病临床诊断与治疗的未来将不可避免地涉及将基于人工智能(AI)的系统整合到常规实践中,以支持血液科医生的决策。多项研究表明,基于AI的模型已经可以用于自动区分细胞、可靠地检测恶性细胞群体、支持染色体带型分析以及解释临床变异,有助于疾病的早期检测和预后判断。然而,如果应用不当或对结果解读错误,即使是最好的工具也可能变得毫无用处。因此,为了全面判断并正确应用新开发的基于AI的系统,血液科医生必须对机器学习的一般概念有基本的了解。在本综述中,我们为血液科医生全面概述了各种机器学习技术、它们在不同诊断子领域(如细胞遗传学、分子遗传学)的当前应用和方法,以及这些系统的局限性和未解决的挑战。